Title: Chapter 9 Hypothesis Testing
1Chapter 9Hypothesis Testing
- 9.1
- The Language of Hypothesis Testing
2Example Illustrating Hypothesis Testing
- According to the National Center for Chronic
Disease Prevention and Health Promotion, 73.8 of
females between the ages of 18 and 29 years
exercise. Kathleen believes that more women
between the ages of 18 and 29 years are now
exercising.
3 How to test her claim?
- Ask all females in the U.S.A? Its impossible!!
- Take a random sample, for example, survey 1000
woman between 18 and 29 years old. And then make
a statistical inference about the
population---all females.
4Statistical Inference
- She obtains a simple random sample of 1000 women
between the ages of 18 and 29 years and finds
that 750 of them are exercising. - Is this evidence that the percent of women
between the ages of 18 and 29 years who are
exercising has increased? Or how likely is it to
obtain a sample of 750 out of 1000 women
exercising from a population when the percentage
of women who exercise is 73.8?
5- What if Kathleens sample resulted in 920 women
exercising? - If the actual percentage of women who exercise is
73.8, the likelihood of obtaining a sample of
920 women who exercise is extremely low.
Therefore , the actual percentage of women who
exercise is indeed bigger than 73.8---that is
,the sample support Kathleens claim-or
Hypothesis.
6Steps in Hypothesis Testing 1. A claim is made.
2. Evidence (sample data) is collected in order
to test the claim.
3. The data is analyzed in order to support or
refute the claim.
7A hypothesis is a statement or claim regarding a
characteristic of one or more populations. In
this chapter, we look at hypotheses regarding a
single population.
8Examples of Claims Regarding a Characteristic of
a Single Population
- In 1997, 43 of Americans 18 years or older
participated in some form of charity work. A
researcher believes that this percentage
different today.
H0 p43 H1 p 43
9Examples of Claims Regarding a Characteristic of
a Single Population
- In 1997, 43 of Americans 18 years or older
participated in some form of charity work. A
researcher believes that this percentage
different today. - In June, 2001 the mean length of a phone call
on a cellular telephone was 2.62 minutes. A
researcher believes that the mean length of a
call has increased since then.
10Examples of Claims Regarding a Characteristic of
a Single Population
- In 1997, 43 of Americans 18 years or older
participated in some form of charity work. A
researcher believes that this percentage
different today. - In June, 2001 the mean length of a phone call
on a cellular telephone was 2.62 minutes. A
researcher believes that the mean length of a
call has increased since then. - Using an old manufacturing process, the standard
deviation of the amount of wine put in a bottle
was 0.23 ounces. With new equipment, the quality
control manager believes the standard deviation
has decreased.
11CAUTION!
We test these types of claims using sample data
because it is usually impossible or impractical
to gain access to the entire population. If
population data is available, then inferential
statistics is not necessary.
12Consider the researcher who believes that the
mean length of a cell phone call has increased
from its June, 2001 mean of 2.62 minutes. To test
this claim, the researcher might obtain a simple
random sample of 36 cell phone calls. Suppose he
determines the mean length of the phone call is
2.70 minutes. Is this enough evidence to
conclude the length of a phone call has
increased? We will assume the length of the phone
call is still 2.62 minutes. Assume the standard
deviation length of a phone call is known to be
0.78 minutes.
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15What if our sample resulted in a sample mean of
2.95 minutes?
16Hypothesis testing is a procedure, based on
sample evidence and probability, used to test
claims regarding a characteristic of one or more
populations.
17The null hypothesis, denoted Ho (read
H-naught), is a statement to be tested. The
null hypothesis is assumed true until evidence
indicates otherwise. In this chapter, it will be
a statement regarding the value of a population
parameter. The alternative hypothesis, denoted,
H1 (read H-one), is a claim to be tested. We
are trying to find evidence for the alternative
hypothesis. In this chapter, it will be a claim
regarding the value of a population parameter.
18In this chapter, there are three ways to set up
the null and alternative hypothesis. 1. Equal
versus not equal hypothesis (two-tailed
test) Ho parameter some value H1 parameter
? some value
19In this chapter, there are three ways to set up
the null and alternative hypothesis. 1. Equal
versus not equal hypothesis (two-tailed
test) Ho parameter some value H1 parameter
?some value 2. Equal versus less than
(left-tailed test) Ho parameter some
value H1 parameter lt some value
20In this chapter, there are three ways to set up
the null and alternative hypothesis. 1. Equal
versus not equal hypothesis (two-tailed
test) Ho parameter some value H1 parameter
? some value 2. Equal versus less than
(left-tailed test) Ho parameter some
value H1 parameter lt some value 3. Equal
versus greater than (right-tailed test) Ho
parameter some value H1 parameter gt some value
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22EXAMPLE Forming Hypotheses For each of the
following claims, determine the null and
alternative hypothesis.
- In 1997, 43 of Americans 18 years or older
participated in some form of charity work. A
researcher believes that this percentage
different today. - In June, 2001 the mean length of a phone call
on a cellular telephone was 2.62 minutes. A
researcher believes that the mean length of a
call has increased since then. - Using an old manufacturing process, the standard
deviation of the amount of wine put in a bottle
was 0.23 ounces. With new equipment, the quality
control manager believes the standard deviation
has decreased.
23Four Outcomes from Hypothesis Testing 1. We could
reject Ho when in fact H1 is true. This would be
a correct decision.
24Four Outcomes from Hypothesis Testing 1. We could
reject Ho when in fact H1 is true. This would be
a correct decision. 2. We could not reject Ho
when in fact Ho is true. This would be a correct
decision.
25Four Outcomes from Hypothesis Testing 1. We could
reject Ho when in fact H1 is true. This would be
a correct decision. 2. We could not reject Ho
when in fact Ho is true. This would be a correct
decision. 3. We could reject Ho when in fact Ho
is true. This would be an incorrect decision.
This type of error is called a Type I error.
26Four Outcomes from Hypothesis Testing 1. We could
reject Ho when in fact H1 is true. This would be
a correct decision. 2. We could not reject Ho
when in fact Ho is true. This would be a correct
decision. 3. We could reject Ho when in fact Ho
is true. This would be an incorrect decision.
This type of error is called a Type I error. 4.
We could not reject Ho when in fact H1 is true.
This would be an incorrect decision. This type
of error is called a Type II error.
27- EXAMPLE Type I and Type II Errors
- For each of the following claims explain what it
would mean to make a Type I error. What would it
mean to make a Type II error? - In 1997, 43 of Americans 18 years or older
participated in some form of charity work. A
researcher believes that this percentage
different today. - In June, 2001 the mean length of a phone call
on a cellular telephone was 2.62 minutes. A
researcher believes that the mean length of a
call has increased since then.
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31CAUTION!
32EXAMPLE Wording the Conclusion In June, 2001
the mean length of a phone call on a cellular
telephone was 2.62 minutes. A researcher
believes that the mean length of a call has
increased since then. (a) Suppose the sample
evidence indicates that the null hypothesis
should be rejected. State the wording of the
conclusion. (b) Suppose the sample evidence
indicates that the null hypothesis should not be
rejected. State the wording of the conclusion.